首页> 外文会议>International Conference on Intelligent Computing(ICIC 2006); 20060816-19; Kunming(CN) >Research on Reactive Power Optimization Based on Immunity Genetic Algorithm
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Research on Reactive Power Optimization Based on Immunity Genetic Algorithm

机译:基于免疫遗传算法的无功优化研究

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This paper proposed a new kind of immune genetic algorithm (IGA) according to the current algorithms solving the reactive power optimization. The hybrid algorithm is applied in reactive power optimization of power system. Adaptive crossover and adaptive mutation are used according to the fitness of individual. The substitution of individuals is implemented and the multiform of the population is kept to avoid falling into local optimum. The decimal integer encoding and reserving the elitist are used to improve the accuracy and computation speed. The flow chart of improved algorithm is presented and the parameter of the immune genetic algorithm is provided. The procedures of IGA algorithm are designed. A standard test system of IEEE 30-bus has been used to test. The results show that the improved algorithm in the paper is more feasible and effective than current known algorithms.
机译:根据目前解决无功优化的算法,提出了一种新型的免疫遗传算法。混合算法应用于电力系统无功优化。根据个体的适应性使用自适应交叉和自适应突变。实行个人替代,并保持人口的多种形式,以避免陷入局部最优状态。十进制整数编码和保留精英用于提高准确性和计算速度。给出了改进算法的流程图,并提供了免疫遗传算法的参数。设计了IGA算法的程序。已使用IEEE 30总线的标准测试系统进行测试。结果表明,本文提出的改进算法比当前已知算法更可行,更有效。

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